流行病预测的时间多分辨率图神经网络

T. Hy, V. Nguyen, Long Tran-Thanh, R. Kondor
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引用次数: 5

摘要

本文介绍了时态多分辨率图神经网络(TMGNN),这是第一个既学习构建多尺度和多分辨率图结构,又结合时间序列信号来捕捉动态图的时间变化的体系结构。我们将我们提出的模型应用于预测未来流行病和大流行的任务,该任务基于从几个欧洲国家的实际COVID-19大流行和水痘流行中收集的历史时间序列数据,并与其他先前最先进的时间架构和图学习算法相比,获得了具有竞争力的结果。我们已经证明,捕获图形的多尺度和多分辨率结构对于提取局部或全局信息非常重要,这些信息对于理解COVID-19等全球大流行的动态起着至关重要的作用,这些大流行始于一个地方城市并蔓延到整个世界。我们的工作为预测和减轻未来的流行病和流行病带来了一个有希望的研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Temporal Multiresolution Graph Neural Networks For Epidemic Prediction
In this paper, we introduce Temporal Multiresolution Graph Neural Networks (TMGNN), the first architecture that both learns to construct the multiscale and multiresolution graph structures and incorporates the time-series signals to capture the temporal changes of the dynamic graphs. We have applied our proposed model to the task of predicting future spreading of epidemic and pandemic based on the historical time-series data collected from the actual COVID-19 pandemic and chickenpox epidemic in several European countries, and have obtained competitive results in comparison to other previous state-of-the-art temporal architectures and graph learning algorithms. We have shown that capturing the multiscale and multiresolution structures of graphs is important to extract either local or global information that play a critical role in understanding the dynamic of a global pandemic such as COVID-19 which started from a local city and spread to the whole world. Our work brings a promising research direction in forecasting and mitigating future epidemics and pandemics.
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